KL divergence based feature switching in the linguistic search space for automatic speech recognition

J. Chaitanya, Rajesh Janakiraman, H. Murthy
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引用次数: 4

Abstract

In this paper, we propose a novel idea for using two different feature streams in a continuous speech recognition system. Conventionally multiple feature streams are concatenated and HMMs trained to build triphone/syllable models. In this paper, instead of concatenation, we build separate subword HMMs for each of the feature streams during training. Also during training, the relevance of a feature stream to a particular sound is evaluated. During testing, hypotheses are generated by the language model. A greedy Kullback Leibler distance measure is used to determine the best feature at a particular instant, for the given hypotheses. There are two important aspects of this approach, namely, a) use of a feature that is relevant for recognizing a specific sound and b) the dimension of the feature stream does not increase with the number of different feature streams. To enable feature switching during recognition, a syllablebased automatically annotated recognition framework is used. In this framework, the test speech signal is first segmented into syllables, and, syllable boundaries are incorporated in the language model. Experiments are performed on three databases (a) Tamil DDNews database (b) TIMIT database (c) NTIMIT database, using, two features: MFCC (derived from the power spectrum of the speech signal) and MODGDF (derived from the phase spectrum of the speech signal). The results show that word error rate (WER) is lower than that of the use of joint features by almost 1.5% for the TIMIT database, by almost 3.4% for the NTIMIT database, by about 3.8% for the Tamil DDNew database.
基于KL散度的语言搜索空间特征切换的自动语音识别
在本文中,我们提出了一种在连续语音识别系统中使用两种不同特征流的新思路。传统上,多个特征流被连接起来,hmm被训练来构建三音/音节模型。在本文中,我们在训练过程中为每个特征流构建单独的子词hmm,而不是串联。在训练过程中,还会评估特征流与特定声音的相关性。在测试过程中,语言模型生成假设。对于给定的假设,贪婪的Kullback Leibler距离度量用于确定特定时刻的最佳特征。这种方法有两个重要方面,即a)使用与识别特定声音相关的特征,b)特征流的维度不会随着不同特征流的数量而增加。为了在识别过程中实现特征切换,使用了基于音节的自动注释识别框架。在该框架中,首先将测试语音信号分割成音节,并将音节边界纳入语言模型。实验在三个数据库(a) Tamil DDNews数据库(b) TIMIT数据库(c) NTIMIT数据库上进行,使用两个特征:MFCC(来自语音信号的功率谱)和MODGDF(来自语音信号的相位谱)。结果表明,TIMIT数据库的单词错误率(WER)比使用联合特征的数据库低近1.5%,NTIMIT数据库低近3.4%,泰米尔DDNew数据库低约3.8%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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